Generation of skill-specific maps from graph world models for robotic systems
With the increase in the availability of Building Information Models (BIM) and (semi-) automatic tools to generate BIM from point clouds, we propose a world model architecture and algorithms to allow the use of the semantic and geometric knowledge encoded within these models to generate maps for rob...
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Zusammenfassung: | With the increase in the availability of Building Information Models (BIM)
and (semi-) automatic tools to generate BIM from point clouds, we propose a
world model architecture and algorithms to allow the use of the semantic and
geometric knowledge encoded within these models to generate maps for robot
localization and navigation. When heterogeneous robots are deployed within an
environment, maps obtained from classical SLAM approaches might not be shared
between all agents within a team of robots, e.g. due to a mismatch in sensor
type, or a difference in physical robot dimensions. Our approach extracts the
3D geometry and semantic description of building elements (e.g. material,
element type, color) from BIM, and represents this knowledge in a graph. Based
on queries on the graph and knowledge of the skills of the robot, we can
generate skill-specific maps that can be used during the execution of
localization or navigation tasks. The approach is validated with data from
complex build environments and integrated into existing navigation frameworks. |
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DOI: | 10.48550/arxiv.2402.18174 |